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G4G0-2/AI & Data Mining/Week 5/Lecture 9 - PRISM.md
2025-03-16 18:59:42 +00:00

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# Covering Algorithms
- Each class in turn; find set of rules covering all examples
- At each stage, rule is identified that covers some examples
- Example is covered if satisfying conditions in the antecedent (LHS) of the rule
- Consider dataset with 2 predicting numeric attributes, and two class values.
- ![](Pasted%20image%2020241017130933.png)
# PRISM: Simple Covering Algorithm
- Generates rule by adding tests that maximise probability of desired class
- Similar to situation in decision trees; problem of selecting attribute to split on
- Each new test reduces rules coverage
- Rule becomes more specific as tests are added
- Search strategy is general-to-specific
- ![](Pasted%20image%2020241017131053.png)
## Selecting a Test
Goal: Maximise probability of desired class
- $t$ = total number of examples covered by rule
- $p$ = number of positive examples of the class covered by rule
- $t - p$ = number of errors made by rule
- => Select test that maximises ratio $p/t$
Stop Condition: $t-p=0$
- $p = t$, $p/t=1$
- Or, set of examples cannot be split further.
## Example: Contact Lenses Dataset | Class = Hard
### Selecting 1st Test of 1st Rule
- Rule to Seek: If ? { then recommendation = Hard }
![](Pasted%20image%2020241017131525.png)
#### Modified Rule and Coverage
- Rule with best test added: If astigmatism = Yes { then recommendation = Hard }
![](Pasted%20image%2020241017131740.png)
### Selecting 2nd Test of 1st Rule
- If astigmatism = Yes and ? { then recommendation = Hard }
![](Pasted%20image%2020241017131912.png)
#### Modified Rule and Its Coverage
- Rule with best test added: If astigmatism = Yes and tear rate = Normal { then recommendation = Hard }
![](Pasted%20image%2020241017132019.png)
### Selecting 3rd Test of 1st Rule
- If astigmatism = Yes and tear rate = Normal and ? { then recommendation = Hard }
![](Pasted%20image%2020241017132059.png)
- PRISM will use test with highest sample size, therefore using Myope.
### 1st Rule for Class = Hard
- Final Rule:
If astigmatism = Yes
and tear rate = Normal
and spectacle prescription = Myope
then recommendation = Hard
$p/t = 3/3 = 1$
# Pseudo-code for PRISM
For each class C
Init E to set of training examples
While E contains examples in class C
Create rule R with empty LHS predicting class C
Until p/t=1, do
For each attribute A not mentioned in R, and each value v
Consider adding condition A=v to LHS of R
Select A and v to maximise p/t
Break Ties by choosing largest sample
Add A=v to R
Remove examples covered by R from E
# Separate and Conquer
- PRISM with outer loop removed generates list of rules for one class
- PRISM with outer loop removed is separate and conquer algorithm
- Identify useful rule
- Separate examples covered
- Conquer remaining examples
# Rule Execution
- Default Rule
- If no rules cover example, prediction is the majority class (most frequent in training data)
- Conflict Resolution Strategy
- If more than one rule covers an example, select predicted class with highest recurrence in training data